IBM SPSS Decision Trees
Use classification and decision trees to help you identify groups and relationships, and predict outcomes. Test this function with a full-feature SPSS trial.
Try SPSS Statistics for free See pricing options
Product screen, classification to identify groups and relationships
What SPSS Decision Trees can do for your business

IBM® SPSS® Decision Trees enables you to identify groups, discover relationships between them and predict future events. It features visual classification and decision trees to help you present categorical results and more clearly explain analysis to non-technical audiences. Create classification models for segmentation, stratification, prediction, data reduction and variable screening. Also, you can create models for interaction identification, category merging and discretizing continuous variables.

This module is included in the SPSS Statistics Professional edition for on premises and in the forecasting and decision trees add-on for subscription plans.

Schedule time to discuss how SPSS Decision Trees can support your business needs.

Learn the pros and cons of using decision trees for data mining and knowledge discovery tasks

Feature spotlights
Tree classification model

Classifies cases into groups or predicts values of a target variable based on values of predictor variables. Enables you to predict or classify future observations based on a set of decision rules.


Validation and analysis

Includes validation tools for exploratory classification analysis. You can also view nodes using one of several methods: show bar charts of target variables, tables or both in each node.


Evaluation features

Includes evaluation graphs to enable visual representation of gains summary tables. Provides a gains chart to identify segments by highest (and lowest) contribution.

Export capabilities

Lets you export objects to any SPSS Statistics output format. Generate rules that define selected segments in SQL to score databases or define syntax to score SPSS Statistics files.


CHAID algorithm

A fast, statistical multi-way tree algorithm that explores data quickly and builds segments and profiles with respect to the desired outcome.


Exhausted CHAID algorithm

A modification of the CHAID algorithm that examines all possible splits for each predictor (independent) variable.


Access complete list of features

Explore the full list of features in this module and compare features included in all SPSS Statistics editions.

Read the data sheet

Classification and regression tree algorithm

A comprehensive binary tree algorithm that partitions data and produces accurate homogeneous subsets.


QUEST algorithm

A statistical algorithm that selects variables without bias and builds more accurate binary trees quickly and efficiently.


Technical details
Software requirements
  • For on premises: Purchase the professional edition
  • For subscription plans: Purchase the forecasting and decision trees add-on
See a complete list of software requirements

Hardware requirements
  • Processor: 2 GHz or faster
  • Display: 1024*768 or higher
  • Memory: 4 GB of RAM required, 8 GB of RAM or more recommended
  • Disk space: 2 GB or more
See a complete list of hardware requirements
Take the next step
Try SPSS Statistics at no cost Compare products and pricing
More ways to explore Documentation Community